Dewangan Ashish, Mallick Ashis, Yadav Ashok Kumar, Ahmad Aqueel, Alqahtani Dhafer, Islam Saiful
Department of Mechanical Engineering, Indian Institute of Technology (Indian School of Mines), Dhanbad 826004, India.
Department of Mechanical Engineering, Galgotias College of Engineering and Technology, Greater Noida 201310, Uttar Pradesh, India.
ACS Omega. 2023 Jun 30;8(27):24586-24600. doi: 10.1021/acsomega.3c02782. eCollection 2023 Jul 11.
This paper's goal is to ascertain the optimum input parameters and nanoparticle concentrations for least emission and better performance by utilizing the genetic algorithm (GA) and response surface methodology (RSM) in a single-cylinder diesel engine running with 20% blend of biodiesel derived from seeds. Experiments to be conducted on the engine were designed with a central composite design (CCD) with input parameters of loads (20-100%), nanoparticle concentrations (NPCs, 0-80 ppm), compression ratios (CRs, 16.5-18.1), injection pressures (IPs, 190-230 bar), and injection timings [ITs, 17-29° bTDC (before top dead center)], and the engine response was recorded. The comparative analysis of optimization tools RSM and GA was employed for finding the ideal setting of engine input parameters and nanoparticle concentrations based on the maximization of performance [brake thermal efficiency (BTE) and brake-specific fuel consumption (BSFC)] and minimization of emissions [(hydrocarbon (HC), carbon monoxide (CO), and nitrogen oxides (NOx)]. The best result was obtained by the RSM method. The optimized input parameters were recorded at a load of 59.36%, an NPC of 80 ppm, a CR of 18.1, an IP of 192.02 bar, and an IT of 18.62° bTDC. At these optimized settings, the performance and emissions were 32.4767% BTE, 0.1905 kg/kW h BSFC, 26.8436 ppm HC, 0.0272% CO, and 83.854 ppm NOx emissions from the engine. The developed model was validated through a confirmatory experiment, and the prediction error was within 8%. Thus, the applied model is appropriate for improving the engine's emission and performance attributes.
本文的目标是通过在使用源自种子的生物柴油20%混合燃料运行的单缸柴油发动机中运用遗传算法(GA)和响应面方法(RSM),确定实现最低排放和更佳性能的最佳输入参数及纳米颗粒浓度。对该发动机进行的实验采用中心复合设计(CCD),输入参数包括负荷(20% - 100%)、纳米颗粒浓度(NPCs,0 - 80 ppm)、压缩比(CRs,16.5 - 18.1)、喷射压力(IPs,190 - 230 bar)以及喷射正时[ITs,上止点前(bTDC)17 - 29°],并记录发动机响应。基于性能最大化[制动热效率(BTE)和制动比油耗(BSFC)]以及排放最小化[碳氢化合物(HC)、一氧化碳(CO)和氮氧化物(NOx)],运用优化工具RSM和GA进行对比分析,以找出发动机输入参数和纳米颗粒浓度的理想设置。通过RSM方法获得了最佳结果。优化后的输入参数记录为:负荷59.36%、NPC为80 ppm、CR为18.1、IP为192.02 bar以及IT为上止点前18.62°。在这些优化设置下,发动机的性能和排放为:BTE为32.4767%、BSFC为0.1905 kg/kW h、HC排放为26.8436 ppm、CO排放为0.0272%以及NOx排放为83.854 ppm。通过验证性实验对所开发的模型进行了验证,预测误差在8%以内。因此,所应用的模型适用于改善发动机的排放和性能特性。